A morphable template framework for robot learning by demonstration: Integrating one-shot and incremental learning approaches

Page view(s)
29
Checked on Apr 20, 2025
A morphable template framework for robot learning by demonstration: Integrating one-shot and incremental learning approaches
Title:
A morphable template framework for robot learning by demonstration: Integrating one-shot and incremental learning approaches
Journal Title:
Robotics and Autonomous Systems
Keywords:
Publication Date:
27 May 2014
Citation:
Yan Wu, Yanyu Su, Yiannis Demiris, A morphable template framework for robot learning by demonstration: Integrating one-shot and incremental learning approaches, Robotics and Autonomous Systems, Available online 27 May 2014, ISSN 0921-8890, http://dx.doi.org/10.1016/j.robot.2014.05.010. (http://www.sciencedirect.com/science/article/pii/S0921889014000992)
Abstract:
Robot learning by demonstration is key to bringing robots into daily social environments to interact with and learn from human and other agents. However, teaching a robot to acquire new knowledge is a tedious and repetitive process and often restrictive to a specific setup of the environment. We propose a template-based learning framework for robot learning by demonstration to address both generalisation and adaptability. This novel framework is based upon a one-shot learning model integrated with spectral clustering and an online learning model to learn and adapt actions in similar scenarios. A set of statistical experiments is used to benchmark the framework components and shows that this approach requires no extensive training for generalisation and can adapt to environmental changes flexibly. Two real-world applications of an iCub humanoid robot playing the tic-tac-toe game and soldering a circuit board are used to demonstrate the relative merits of the framework.
License type:
Funding Info:
Description:
ISSN:
0921-8890
Files uploaded:

File Size Format Action
wu2014morphable.pdf 911.41 KB PDF Open